Department of ICT Integrated Ocean Smart Cities Engineering, Dong-A University, Busan, Republic of Korea.
Department of Architectural Engineering, Dankook University, Yongin, Republic of Korea.
Front Public Health. 2024 Aug 12;12:1430697. doi: 10.3389/fpubh.2024.1430697. eCollection 2024.
Construction worker safety remains a major concern even as task automation increases. Although safety incentives have been introduced to encourage safety compliance, it is still difficult to accurately measure the effectiveness of these measures. A simple count of accident rates and lower numbers do not necessarily mean that workers are properly complying with safety regulations. To address this problem, this study proposes an image-based approach to monitor moment-by-moment worker safety behavior and evaluate the effects of different safety incentive scenarios.
By capturing workers' safety behaviors using a model integrated with OpenPose and spatiotemporal graph convolutional network, this study evaluated the effects of safety-incentive scenarios on workers' compliance with rules while on the job. The safety incentive scenarios in this study were designed as 1) varying the type (i.e., providing rewards and penalties) of incentives and 2) varying the frequency of feedback about ones' own compliance status during tasks. The effects of the scenarios were compared to the average compliance rates of three safety regulations (i.e., personal protective equipment self-monitoring hazard avoidance, and arranging the safety hook) for each scenario.
The results show that 1) rewarding a good-compliance is more effective when there is no feedback on compliance status, and 2) penalizing non-compliance is more effective when there are three feedbacks during the tasks.
This study provides a more accurate assessment of safety incentives and their effectiveness by focusing on safe behaviors to promote safety compliance among construction workers.
即使任务自动化程度不断提高,建筑工人的安全仍然是一个主要关注点。尽管已经引入了安全激励措施来鼓励安全合规,但仍然难以准确衡量这些措施的有效性。事故率的简单计数和较低的数字并不一定意味着工人正在正确遵守安全规定。为了解决这个问题,本研究提出了一种基于图像的方法来实时监测工人的安全行为,并评估不同安全激励场景的效果。
通过使用集成 OpenPose 和时空图卷积网络的模型捕捉工人的安全行为,本研究评估了安全激励场景对工人在工作时遵守规则的影响。本研究中的安全激励场景设计为 1)改变激励的类型(即提供奖励和惩罚),2)改变对自身合规状态的反馈频率在任务期间。将这些场景的效果与每个场景下三项安全法规(即个人防护设备自我监测危险回避和安排安全钩)的平均合规率进行了比较。
结果表明,1)在没有关于合规状态的反馈的情况下,奖励良好合规行为更有效,2)在任务期间有三次反馈时,对不合规行为进行惩罚更有效。
本研究通过关注安全行为,为安全激励及其有效性提供了更准确的评估,以促进建筑工人的安全合规。